From Transformers to Large Language Models: A systematic review of AI applications in the energy sector towards Agentic Digital Twins
Gabriel Antonesi, Tudor Cioara, Ionut Anghel, Vasilis Michalakopoulos, Elissaios Sarmas, Liana Toderean

TL;DR
This paper reviews recent advances in AI, especially Transformers and LLMs, in the energy sector, highlighting their architectural foundations, practical applications, and the emerging concept of Agentic Digital Twins for autonomous energy management.
Contribution
It provides a comprehensive synthesis of how Transformer models and LLMs are adapted for energy applications and introduces the innovative concept of Agentic Digital Twins integrating LLMs for autonomous systems.
Findings
Transformers improve temporal and contextual modeling in energy tasks.
LLMs are adapted for energy sector tasks like forecasting and decision-making.
Agentic Digital Twins enable autonomous, proactive energy management.
Abstract
Artificial intelligence (AI) has long promised to improve energy management in smart grids by enhancing situational awareness and supporting more effective decision-making. While traditional machine learning has demonstrated notable results in forecasting and optimization, it often struggles with generalization, situational awareness, and heterogeneous data integration. Recent advances in foundation models such as Transformer architecture and Large Language Models (LLMs) have demonstrated improved capabilities in modelling complex temporal and contextual relationships, as well as in multi-modal data fusion which is essential for most AI applications in the energy sector. In this review we synthesize the rapid expanding field of AI applications in the energy domain focusing on Transformers and LLMs. We examine the architectural foundations, domain-specific adaptations and practical…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Smart Grid Energy Management · Integrated Energy Systems Optimization
